Abstract

With rapid urbanization, awareness of environmental pollution is growing rapidly and, accordingly, interest in environmental sensors that measure atmospheric and indoor air quality is increasing. Since these IoT-based environmental sensors are sensitive and value reliability, it is essential to deal with missing values, which are one of the causes of reliability problems. Characteristics that can be used to impute missing values in environmental sensors are the time dependency of single variables and the correlation between multivariate variables. However, in the existing method of imputing missing values, only one characteristic has been used and there has been no case where both characteristics were used. In this work, we introduced a new ensemble imputation method reflecting this. First, the cases in which missing values occur frequently were divided into four cases and were generated into the experimental data: communication error (aperiodic, periodic), sensor error (rapid change, measurement range). To compare the existing method with the proposed method, five methods of univariate imputation and five methods of multivariate imputation—both of which are widely used—were used as a single model to predict missing values for the four cases. The values predicted by a single model were applied to the ensemble method. Among the ensemble methods, the weighted average and stacking methods were used to derive the final predicted values and replace the missing values. Finally, the predicted values, substituted with the original data, were evaluated by a comparison between the mean absolute error (MAE) and the root mean square error (RMSE). The proposed ensemble method generally performed better than the single method. In addition, this method simultaneously considers the correlation between variables and time dependence, which are characteristics that must be considered in the environmental sensor. As a result, our proposed ensemble technique can contribute to the replacement of the missing values generated by environmental sensors, which can help to increase the reliability of environmental sensor data.

Highlights

  • Introduction iationsThe concept of a smart city has become a trend, with rapid urbanization occurring worldwide

  • Various methods of handling missing values are being studied, but a new method is needed for the more accurate replacement of missing values that can be applied to environmental sensors

  • Weighted average and stacking models were applied to the ensemble methods, based on the missing values were predicted by each model

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Summary

Introduction

The concept of a smart city has become a trend, with rapid urbanization occurring worldwide. Various technologies that are necessary for smart cities, such as the Internet of Things, machine learning, and big data applications have been developed. Among the various smart city technologies, interest in the deployment of applications for environmental pollution monitoring is increasing [1,2]. The environment is deteriorating due to economic activity, rapid urbanization, and increased energy consumption [3]. The World Health Organization (WHO) announced that air pollution, soil quality, and water quality are the biggest environmental risk factors for health. Air pollutants that penetrate through the respiratory tract and blood vessels adversely affect the lungs, heart, and brain [4,5].

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